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Assessing the precision of high-throughput computational and laboratory approaches for the genome-wide identification of protein subcellular localization in bacteria

机译:评估用于细菌中蛋白质亚细胞定位的全基因组鉴定的高通量计算和实验室方法的精度

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Background Identification of a bacterial protein's subcellular localization (SCL) is important for genome annotation, function prediction and drug or vaccine target identification. Subcellular fractionation techniques combined with recent proteomics technology permits the identification of large numbers of proteins from distinct bacterial compartments. However, the fractionation of a complex structure like the cell into several subcellular compartments is not a trivial task. Contamination from other compartments may occur, and some proteins may reside in multiple localizations. New computational methods have been reported over the past few years that now permit much more accurate, genome-wide analysis of the SCL of protein sequences deduced from genomes. There is a need to compare such computational methods with laboratory proteomics approaches to identify the most effective current approach for genome-wide localization characterization and annotation. Results In this study, ten subcellular proteome analyses of bacterial compartments were reviewed. PSORTb version 2.0 was used to computationally predict the localization of proteins reported in these publications, and these computational predictions were then compared to the localizations determined by the proteomics study. By using a combined approach, we were able to identify a number of contaminants and proteins with dual localizations, and were able to more accurately identify membrane subproteomes. Our results allowed us to estimate the precision level of laboratory subproteome studies and we show here that, on average, recent high-precision computational methods such as PSORTb now have a lower error rate than laboratory methods. Conclusion We have performed the first focused comparison of genome-wide proteomic and computational methods for subcellular localization identification, and show that computational methods have now attained a level of precision that is exceeding that of high-throughput laboratory approaches. We note that analysis of all cellular fractions collectively is required to effectively provide localization information from laboratory studies, and we propose an overall approach to genome-wide subcellular localization characterization that capitalizes on the complementary nature of current laboratory and computational methods.
机译:背景技术细菌蛋白的亚细胞定位(SCL)的识别对于基因组注释,功能预测以及药物或疫苗靶标识别非常重要。亚细胞分级分离技术与最新的蛋白质组学技术相结合,可从不同的细菌区室中鉴定出大量蛋白质。但是,将复杂的结构(如细胞)分成几个亚细胞区室并不是一件容易的事。可能会发生来自其他隔室的污染,并且某些蛋白质可能位于多个位置。在过去的几年中,已经报道了新的计算方法,这些方法现在可以对从基因组推导的蛋白质序列的SCL进行更准确的全基因组分析。有必要将这种计算方法与实验室蛋白质组学方法进行比较,以鉴定出目前最有效的全基因组定位和注释方法。结果在这项研究中,对细菌区室的十个亚细胞蛋白质组分析进行了回顾。 PSORTb 2.0版用于计算预测这些出版物中报道的蛋白质的定位,然后将这些计算预测与蛋白质组学研究确定的定位进行比较。通过使用组合方法,我们能够鉴定具有双重定位的多种污染物和蛋白质,并且能够更准确地鉴定膜亚蛋白质组。我们的结果使我们能够估计实验室子蛋白质组学研究的精确度,并且在此表明,平均而言,目前诸如PSORTb的高精度计算方法现在的错误率低于实验室方法。结论我们已经对全基因组蛋白质组学和计算方法进行了首次重点比较,以进行亚细胞定位鉴定,结果表明,计算方法现在已经达到了超过高通量实验室方法的精度水平。我们注意到,需要对所有细胞部分进行集体分析才能有效地提供来自实验室研究的定位信息,并且我们提出了一种利用当前实验室和计算方法的互补性来进行全基因组亚细胞定位表征的总体方法。

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